A Heartbeat Away From Consciousness: Heart Rate Variability Entropy can discriminate disorders of consciousness and is correlated with resting-state fMRI brain connectivity of the Central Autonomic Network
Riganello, Francesco; Larroque, Stephen Karl; Bahri, Mohamed Aliet al.
Frontiers _ A Heartbeat Away From Consciousness_ Heart Rate Variability Entropy can discriminate disorders of consciousness and is correlated with resting-state fMRI brain connectivity of the Central Autonomic Network.pdf
disorders of consciousness (DOC), fMRI — functional magnetic resonance imaging, ECG, heart rate variability (HRV) analysis, machine learning (artificial intelligence), unresponsive wakefulness syndrome (UWS), minimally conscious state (MCS), Central autonomic network, coma recovery scale-revised (CRS-R); fmri; heart rate variability; entropy; consciousness; connectivity; autonomic system; ecg; magnetic resonance imagery
Abstract :
[en] Motivation:
Heart rate variability (HRV) reflects the heart-brain two-way dynamic interactions[1-5]. HRV entropy analysis quantifies the unpredictability and complexity of the heart rate beats intervals and over multiple time scales using multiscale entropy (MSE)[6-8]. The complexity index (CI) provides a score of a system’s complexity by aggregating the MSE measures over a range of time scales[8]. Most HRV entropy studies have focused on acute traumatic patients using task-based designs[9]. We here investigate the CI and its discriminative power in chronic patients with unresponsive wakefulness syndrome (UWS) and minimally conscious state (MCS) at rest, and its relation to brain functional connectivity.
Methods:
We investigated the CI in short (CIs) and long (CIl) time scales in 16 UWS and 17 MCS sedated. CI for MCS and UWS groups were compared using a Mann-Whitney exact test. Spearman’s correlation tests were conducted between the Coma Recovery Scale-revised (CRS-R) and both CI. Discriminative power of both CI was assessed with One-R machine learning model. Correlation between CI and brain connectivity (detected with functional magnetic resonance imagery using seed-based and hypothesis-free intrinsic connectivity) was investigated using a linear regression in a subgroup of 12 UWS and 12 MCS patients with sufficient image quality.
Results and Discussion:
Significant differences were found between MCS and UWS for CIs and CIl (0.0001≤p≤0.006). Significant correlations were found between CRS-R and CIs and CIl (0.0001≤p≤0.026). The One-R classifier selected CIl as the best discriminator between UWS and MCS with 85% accuracy, 19% false positive rate and 12% false negative rate after a 10-fold cross-validation test. Positive correlations were observed between CI and brain areas belonging to the autonomic system.
CI was found to be significantly higher in MCS compared to UWS patients, with high discriminative power and lower false negative rate than the reported misdiagnosis rate of human assessors, providing an easy, inexpensive and non-invasive diagnosis tool. CI is correlated to functional connectivity changes in brain regions belonging to the autonomic nervous system, suggesting that CI can provide an indirect way to screen and monitor connectivity changes in this neural system. Future studies should investigate further the extent of CI’s predictive power for other pathologies in the disorders of consciousness spectrum.
Research Center/Unit :
GIGA-Consciousness - Coma Science Group - University & Hospital of Liège
Carrière, Manon ; Université de Liège - ULiège > GIGA : Coma Group
CHARLAND-VERVILLE, Vanessa ; Centre Hospitalier Universitaire de Liège - CHU > Services opérationnels de l'Administrateur Délégué > Unité de psychologie de la santé
VANHAUDENHUYSE, Audrey ; Centre Hospitalier Universitaire de Liège - CHU > Département d'Anesthésie et réanimation > Centre interdisciplinaire d'algologie
Laureys, Steven ; Université de Liège - ULiège > GIGA : Coma Group
Di Perri, Carol ; Université de Liège - ULiège > GIGA : Coma Group
Language :
English
Title :
A Heartbeat Away From Consciousness: Heart Rate Variability Entropy can discriminate disorders of consciousness and is correlated with resting-state fMRI brain connectivity of the Central Autonomic Network
H2020 - 785907 - HBP SGA2 - Human Brain Project Specific Grant Agreement 2 FP7 - 602150 - CENTER-TBI - Collaborative European NeuroTrauma Effectiveness Research in TBI H2020 - 686764 - LUMINOUS - Studying, Measuring and Altering Consciousness through information theory in the electrical brain
Funders :
F.R.S.-FNRS - Fonds de la Recherche Scientifique French-Speaking Community of Belgium Mind Science Foundation, IAP research network P7/06 of the Belgian Government (Belgian Science Policy) ASE - Agence Spatiale Européenne BELSPO - Politique scientifique fédérale ERDF - European Regional Development Fund CHU Liège - Centre Hospitalier Universitaire de Liège ULiège - Université de Liège EC - European Commission EU - European Union
Funding text :
This research was supported by the University and Hospital of Liège, the Belgian National Funds for Scientific Research (F.R.S.-F.N.R.S.), the French Speaking Community Concerted Research Action (ARC 12-17/01), Center-TBI (FP7-HEALTH- 602150),Human Brain Project (EU-H2020-fetflagship-hbp-sga1- ga720270), Luminous project (EU-H2020-fetopen-ga686764), the JamesMcDonnell Foundation, the Mind Science Foundation, IAP research network P7/06 of the Belgian Government (Belgian Science Policy), the Public Utility Foundation Université Européenne du Travail, Fondazione Europea di Ricerca Biomedica, the Bial Foundation, Belgian National Plan Cancer, the European Space Agency, Belspo and the European Commission.